Items where Author is "Ayoubi, S"

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Number of items: 8.

Article

Ayoubi, S and Emami, N and Ghaffari, N and Honarjoo, N and Sahrawat, K L (2014) Pasture degradation effects on soil quality indicators at different hillslope positions in a semiarid region of western Iran. Environmental Earth Sciences, 71 (1). pp. 375-381. ISSN 1866-6299

Ayoubi, S and Mehnatkesh, A and Jalalian, A and Sahrawat, K L and Gheysari, M (2014) Relationships between grain protein, Zn, Cu, Fe and Mn contents in wheat and soil and topographic attributes. Archives of Agronomy and Soil Science, 60 (5). pp. 625-638. ISSN 0365-0340

Mehnatkesh, A and Ayoubi, S and Jalalian, A and Sahrawat, K L (2013) Relationships between soil depth and terrain attributes in a semi arid hilly region in western Iran. Journal of Mountain Science, 10 (1). pp. 163-172. ISSN 1672-6316

Ayoubi, S and Khormali, F and Sahrawat, K L and Rodrigues de Lima, A C (2011) Assessing Impacts of Land Use Change on Soil Quality Indicators in a Loessial Soil in Golestan Province, Iran. Journal of Agricultural Science and Technology, 13 (5). pp. 727-742. ISSN 1680-7073

Ayoubi, S and Sahrawat, K L (2011) Comparing multivariate regression and artificial neural network to predict barley production from soil characteristics in northern Iran. Archives of Agronomy and Soil Science, 57 (5). pp. 549-565. ISSN 0365-0340

Tajgardan, T and Ayoubi, S and Shataee, S and Sahrawat, K L (2010) Soil Surface Salinity Prediction Using ASTER Data: Comparing Statistical and Geostatistical Models. Australian Journal of Basic and Applied Sciences, 4 (3). pp. 457-467. ISSN 1991-8178

Ayoubi, S and Khormali, F and Sahrawat, K L (2009) Relationships of barley biomass and grain yields to soil properties within a field in the arid region: Use of factor analysis. Acta Agriculturae Scandinavica, 59. pp. 107-117.

Book Section

Ayoubi, S and Shahri, A P and Karchegani, P M and Sahrawat, K L (2011) Application of Artificial Neural Network (ANN) to Predict Soil Organic Matter Using Remote Sensing Data in Two Ecosystems. In: Biomass and Remote Sensing of Biomass. InTech Open Access, InTechWeb.org, pp. 181-196. ISBN 978-953-307-490-0

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